A network processing system is described that is able to scan the entire contents of data packets passing through it, and to associate related data packets into discrete sessions, or flows. This ability allows the network processing system to learn characteristics of flows and events contained within those flows. Further, the network processing system can remember characteristics and events that have already been learned for use in processing future data packets. And finally, the network processing system can apply treatments to individual data packets and flows based on the characteristics and events learned, as well as previous state that has been maintained for that flow. To accomplish this, the network processing system includes processing engines, referred to as learning state machines, that scan the entire contents of data packets, use specific information in the data packets to associate the data packet with a particular session, or flow, identify characteristics of the data packet and associated flow, as well as events contained within the flow, store a state for the flow that contains the characteristics and events already learned, and determine a treatment for the data packet based on its contents and flow state.
|
1. A network processing system for use in a network, the network passing a plurality of data packets, which form a plurality of flows, the network processing system comprising:
a network interface operable to receive data packets from the network and further operable to send processed data packets back onto the network; and
a learning state machine in communication with the network interface, the learning state machine operable to learn and maintain state for particular flows based on content of respective flows, wherein the learning state machine assigns an identifier to one or more of the particular flows and associates each data packet belonging to that flow with the identifier, the learning state machine further operable to identify characteristics of one or more of the particular flows and to store those characteristics in a state database in the learning state machine such that the network processing system is able to treat the data packets based on the state of the associated flow.
10. A network processing system for use in a network, the network consisting of multiple flows each flow formed by multiple data packets, the network processing system comprising:
at least one left line interface operable to receive data packets from the network and to send processed data packets onto the network;
at least one right line interface operable to receive data packets from the network and to send processed data packets onto the network;
a right learning state machine receiving data packets from the left interface, and sending processed data packets to the right line interface; and
a left learning state machine receiving data packets from the right interface, and sending processed data packets to the left line interface;
each of the right and left learning state machines further comprising:
a traffic flow processor processing the data packets to associate each data packet with a particular flow, to maintain state for each flow, and to compare one or more flows to a database of known signatures, such that a match with one or more signatures within the database of known signatures causes the network processing system to apply a treatment to the flow;
a quality of service processor communicating with the traffic flow processor and receiving the treatment, such that the quality of service processor uses the treatment to determine the handling of the data packets and their associated flow.
2. The network processing system of
3. The network processing system of
4. The network processing system of
5. The network processing system of
6. The network processing system of
7. The network processing system of
8. The network processing system of
9. The network processing system of
11. The network processing system of
12. The network processing system of
13. The network processing system of
14. The network processing system of
15. The network processing system of
16. The network processing system of
17. The network processing system of
|
The present invention relates to broadband data networking equipment. Specifically, the present invention relates to a network processing system that is able to recognize events and to learn and maintain state for individual traffic flows on a network.
The power of internet protocol (IP) networks, such as the Internet, is their connectionless method of transporting data from source to destination. The nature of this connectionless transport is embodied in the “forward and forget” paradigm of the IP network's most powerful tool: the router. However, this greatest strength is also the IP network's greatest weakness. The “forward and forget” philosophy inherent in the network insures that there is no information about any data packet, and consequently any session, or flow, maintained by the network. Without information about packets or flows that the network could use to treat one packet or flow differently than the rest, the network must treat every packet and flow the same, resulting in the best efforts form of quality of service, as anyone who has ever used the Internet is familiar with.
To avoid the “forward and forget” paradigm, the network needs to be able to learn and maintain knowledge of the characteristics of the data packets and flows passing through it. Additionally, the network should learn and remember the events that are contained within the contents of those data packets or flows. With this knowledge, the network would have the information necessary to distinguish between packets and flows, and give those with particular characteristics or events treatment different from the other packets in the network. For example, if the network was able to recognize a streaming video flow, the network could assign a higher quality of service to that flow to ensure that it passed through the network in the most efficient fashion. Similarly, if the network could recognize data packets from a user who had paid a premium for better service, the network could ensure that those data packets received higher quality of service than packets from users who had not paid the premium. Further, if the network could recognize events within flows, such as an email infected with a virus, the network could act on that information and discard the email or strip the infected attachment.
Accordingly, what is needed is a network processing system that can act as a learning state machine. The learning state machine is able to examine data packets and flows and learn characteristics about and events in those data packets and flows, save those characteristics and events as state, and to modify and direct the data packets and flows based, at least in part, on the state information.
The present invention provides for a network processing system that acts as a learning state machine to identify and learn characteristics about and events contained in the data packets and flows being processed. The network processing system includes a network interface, or line interface, which receives data in the form of packets from the network and transmits processed data, or packets, back onto the network. The network interface communicates with a learning state machine in the network processing system that is operable to assign an identifier to the packet. The identifier associates the packet with the particular session, or flow, of which the packet is a part. This identifier allows the learning state machine to maintain a state database of characteristics and events related to that flow even across packet boundaries. Using any previously determined state and the packet being processed, the learning state machine compares the packet to a database of known signatures, the database of known signatures includes programmable characteristics and events for which the network processing is programmed to respond. This comparison results in the processing engine determining a treatment for the packet. The treatment could include modification, and routing and/or the direction of the packets back onto the network. In one embodiment of the network processing system, two unidirectional processing engines are used in communication with each other and a management module to produce a bi-directional network processing system.
The learning state machine or machines in the network processing system further include a traffic flow scanning processor, or traffic flow processor, which is operable to associate each packet with the identifier identifying its flow. The traffic flow processor compares each packet to the database of programmed signatures containing the known signatures, and determines a treatment for the packet. The traffic flow engine also maintains the state database. The traffic flow processor communicates with a quality of service processor, which uses the treatment to modify and direct the packet back onto the network.
A management interface is also described that resides on a server separate from the network processing system. The management interface includes the programming interface, either a command line interface or a graphical user interface, used to set the network policies and other signature and configuration information. The programming information is used in conjunction with other databases and libraries to build an image file that can be remotely loaded into the appropriate network processing system under the management interface's control. The image file contains all the programmable information, including configuration and signature images, necessary for the network processing system to operate as a policy gateway.
The foregoing has outlined, rather broadly, preferred and alternative features of the present invention so that those skilled in the art may better understand the detailed description of the invention that follows. Additional features of the invention will be described hereinafter that form the subject of the claims of the invention. Those skilled in the art will appreciate that they can readily use the disclosed conception and specific embodiment as a basis for designing or modifying other structures for carrying out the same purposes of the present invention. Those skilled in the art will also realize that such equivalent constructions do not depart from the spirit and scope of the invention in its broadest form.
For a more complete understanding of the present invention, reference is now made to the following descriptions taken in conjunction with the accompanying drawings, in which:
Referring now to
Access network 12, an example of which would be an Internet Service Providers (ISPs) or Local Exchange Carriers (LECs), is used to provide both data and voice access over the public IP network. Access network 12 can provide services for enterprises through enterprise routers 16, for example company networks such as the company network for Lucent Technologies or Merrill Lynch, or for individual homes, home offices, or small businesses through dial-up or high speed connections such as digital subscriber lines (DSL) which connect through aggregation devices such as DSLAM 14.
Access network 12 includes a switched backbone 20, shown here as an asynchronous transfer mode (ATM) network, which is formed by switches and routers, to route data over its network. Domain name servers and other networking equipment, which are not shown, are also included in access network 12. Access network 12 provides connections between its own subscribers, and between its subscribers and core IP network 10, and other networks 16, so that its subscribers can reach the customers of other access networks.
It can easily be seen that points exist at the edges of the network structures and between network structures where data is passed across network boundaries. One major problem in the network structures shown in
An example of the employment of such a device is shown in
In accordance with the requirements set forth above, the present invention provides for a network processing system that is able to scan, classify, and modify network traffic including payload information at speeds of OC-3, OC-12, OC-48 and greater, thereby providing an effective learning state machine for use in networks.
In order to help understand the operation of the network processing system described herein,
Referring now to
The line interface cards take the incoming data in the form of packets and place the data on a data bus 54 which is preferably an industry standard data bus such as a POS-PHY Level 3, or an ATM UTOPIA Level 3 type data bus. Data received on left line interfaces 38 is sent to learning state machine, or processing engine 44, while data received on right line interfaces 42 is sent to learning state machine, or processing engine 46. While network processing system 40 is bi-directional, individual learning state machines 44 and 46 within network processing system 40 are unidirectional, requiring two to process bi-directional information. Each learning state machine 44 and 46, the operation of which will be described in greater detail with reference to
An internal bus 52, which is preferably a PCI bus, is used to allow learning state machines 44 and 46 to communicate with each other, and to allow management module 48 and optional auxiliary processor module 50 to communicate with both learning state machines 44 and 46. Intercommunication between learning state machines 44 and 46 allows the processing engines to exchange information learned from a flow that can be applied to the treatment for the return flow. For example, treatment for a high-priority customer needs to be applied to both outgoing and incoming information. Since each learning state machine is unidirectional, to affect both directions of traffic, information must be shared between learning state machines.
Management module 48 is used to control the operation of each of the learning state machines 44 and 46, and to communicate with external devices which are used to load network processing system 40 with policy, QoS, and treatment instructions that network processing system 40 applies to the network traffic it processes.
Referring now to
Fast-path data bus 126 feeds the data to traffic flow scanning processor 140, which includes header preprocessor 104 and content processor 110. The data is first sent to header preprocessor 104, which is operable to perform several operations using information contained in the data packet headers. Header preprocessor 104 stores the received data packets in a packet storage memory associated with header preprocessor 104, and scans the header information. The header information is scanned to identify the type, or protocol, of the data packet, which is used to determine routing information and to decode the IP header starting byte. As will be discussed below, the learning state machine, in order to function properly, needs to reorder out of order data packets and reassemble data packet fragments. Header preprocessor 104 is operable to perform the assembly of asynchronous transfer mode (ATM) cells into complete data packets (PDUs), which could include the stripping of ATM header information.
After data packets have been processed by header preprocessor 104 the data packets, and any conclusion formed by the header preprocessor, such as QoS information, are sent on fast-data path 126 to the other half of traffic flow scanning engine 140, content processor 110. The received packets are stored in packet storage memory (not shown) while they are processed by content processor 110. Content processor 110 is operable to scan the contents of data packets received from header preprocessor 104, including the entire payload contents of the data packets. The header is scanned as well, one goal of which is to create a session id using predetermined attributes of the data packet.
In the preferred embodiment, a session id is created using session information consisting of the source address, destination address, source port, destination port and protocol, although one skilled in the art would understand that a session id could be created using any subset of fields listed, or any additional fields in the data packet, without departing from the scope of the present invention. When a data packet is received that has new session information the header preprocessor creates a unique session id to identify that particular traffic flow. Each successive data packet with the same session information is assigned the same session id to identify each packet within that flow. Session ids are retired when the particular traffic flow is ended through an explicit action, or when the traffic flow times out, meaning that a data packet for that traffic flow has not been received within a predetermined amount of time. While the session id is discussed herein as being created by the header preprocessor 104, the session id can be created anywhere in traffic flow scanning engine 140 including in content processor 110.
The contents of any or all data packets are compared to a database of known signatures, and if the contents of a data packet, or packets, match a known signature, an action associated with that signature and/or session id can be taken by the processing engine. Additionally, content processor 110 is operable to maintain state awareness throughout each individual traffic flow. In other words, content processor 110 maintains a database for each session which stores state information related to not only the current data packets from a traffic flow, but state information related to the entirety of the traffic flow. This allows network processing system 40 to act not only based on the content of the data packets being scanned but also based on the contents of the entire traffic flow. The specific operation of content processor 110 will be described with reference to
Once the contents of the packets have been scanned and a conclusion reached by traffic flow scanning engine 140, the packets and the associated conclusions of either or both the header preprocessor 104 and the content processor 110 are sent to quality of service (QoS) processor 116. QoS processor 116 again stores the packets in its own packet storage memory for forwarding. QoS processor 116 is operable to perform the traffic flow management for the stream of data packets processed by network processing system 40. QoS processor contains engines for traffic management, traffic shaping and packet modification.
QoS processor 116 takes the conclusion of either or both of header preprocessor 104 and content processor 110 and assigns the data packet to one of its internal quality of service queues based on the conclusion. The quality of service queues can be assigned priority relative to one another, or can be assigned a maximum or minimum percentage of the traffic flow through the device. This allows QoS processor 116 to assign the necessary bandwidth to traffic flows such as VoIP, video and other flows with high quality and reliability requirements, while assigning remaining bandwidth to traffic flows with low quality requirements such as email and general web surfing to low priority queues. Information in queues that do not have the available bandwidth to transmit all the data currently residing in the queue according to the QoS engine is selectively discarded, thereby removing that data from the traffic flow.
The quality of service queues also allow network processing system 40 to manage network attacks such as denial of service (DoS) attacks. Network processing system 40 can act to qualify traffic flows by scanning the contents of the packets and verifying that the contents contain valid network traffic between known sources and destinations. Traffic flows that have not been verified because they are from unknown sources, or because they are new unclassified flows, can be assigned to a low quality of service queue until the sources are verified or the traffic flow is classified as valid traffic. Since most DoS attacks send either new session information, data from spoofed sources, or meaningless data, network processing system 40 would assign those traffic flows to low quality traffic queues. This ensures that the DoS traffic would receive no more than a small percentage (i.e. 5%) of the available bandwidth, thereby preventing the attacker from flooding downstream network equipment.
The QoS queues in QoS processor 116 (there are 64 k queues in the present embodiment of the QoS processor, although any number of queues could be used) feed into schedulers (1024 in the present embodiment), which feed into logic ports (256 in the present embodiment), which send the data to flow control port managers (32 in the present embodiment) which can correspond to physical egress ports for the network device. The traffic management engine and the traffic shaping engine determine the operation of the schedulers and logic ports in order to maintain traffic flow in accordance with the programmed parameters.
QoS processor 116 also includes a packet modification engine, which is operable to modify, add, or delete bits in any of the fields of a data packet. This allows QoS processor 116 to change DiffServ bits, or to place the appropriate MPLS shims on the data packets for the required treatment. The packet modification engine in QoS processor 116 can also be used to change information within the payload itself if necessary. Data packets are then sent along fast-data path 126 to output to the associated line interfaces, where it is converted back into an analog signal and placed on the network.
As with all network equipment, a certain amount of network traffic will not be able to be processed along fast-data path 126. This traffic will need to be processed by on-board microprocessor 124. The fast-path traffic flow scanning engine 140 and QoS processor 116 send packets requiring additional processing to flow management processor 122, which forwards them to microprocessor 124 for processing. The microprocessor 124 then communicates back to traffic flow scanning engine 140 and QoS processor 116 through flow management processor 122. Flow management processor 122 is also operable to collect data and statistics on the nature of the traffic flow through the processing engine 40. Bridges 146 are used between elements to act as buffers on PCI buses 148 in order to prevent the loss of data that could occur during a flood of the PCI bus.
As can be seen from the description of
Referring now to
Since content processor 110 scans the contents of the payload, and is able to scan across packet boundaries, content processor 110 must be able to reassemble fragmented packets and reorder out of order packets on a per session basis. Reordering and reassembling is the function of queue engine 302. Queue engine 302 receives data off the fast-path data bus 127 using fast-path interface 310. Packets are then sent to packet reorder and reassembly engine 312, which uses packet memory controller 316 to store the packets into packet memory 112. Reordering and reassembly engine 312 also uses link list controller 314 and link list memory 318 to develop detailed link lists that are used to order the data packets for processing. The data packets are broken into 256 byte blocks for storage within the queue engine 302. Session CAM 320 can store the session id generated by queue engine 302 of content processor 110. Reordering and reassembly engine 312 uses the session id to link data packets belonging to the same data flow.
In order to obtain the high throughput speeds required, content processor 110 must be able to process packets from multiple sessions simultaneously. Content processor 110 processes blocks of data from multiple data packets each belonging to a unique traffic flow having an associated session id. In the preferred embodiment of the present invention, context engine 304 of content processor 110 processes 64 byte blocks of 64 different data packets from unique traffic flows simultaneously. Each of the 64 byte blocks of the 64 different data flows represents a single context for the content processor. The scheduling and management of all the simultaneous contexts for content processor 110 is handled by context engine 304.
Context engine 304 works with queue engine 302 to select a new context when a context has finished processing and has been transmitted out of content processor 110. Next free context/next free block engine 330 communicates with link list controller 314 to identify the next block of a data packet to process. Since content processor 110 must scan data packets in order, only one data packet or traffic flow with a particular session id can be active at one time. Active control list 332 keeps a list of session ids with active contexts and checks new contexts against the active list to insure that the new context is from an inactive session id. When a new context has been identified, packet loader 340 uses the link list information retrieved by the next free context/next free block engine 330 to retrieve the required block of data from packet memory 112 using packet memory controller 316. The new data block is then loaded into a free buffer from context buffers 342 where it waits to be retrieved by content scanning engine interface 344.
Content scanning engine interface 344 is the interface between context engine 304 and content scanning engine 306. When content scanning engine 306 has room for a new context to be scanned, content scanning engine interface 344 sends a new context to string preprocessor 360 in content scanning engine 306. String preprocessor 360 is operable to simplify the context by performing operations such as compressing white space (i.e. spaces, tabs, returns) into a single space to simplify scanning. Once string preprocessor 360 has finished, the context is loaded into one of the buffers in context buffers 362 until it is retrieved by string compare 364. String compare 364 controls the input and output to signature memory 366. While four signature memories 366, each of which is potentially capable of handling multiple contexts, are shown any number could be used to increase or decrease the throughput through content scanning engine 110. In the present embodiment, each of the signature memories 366 is capable of processing four contexts at one time.
One of the signature memories 366 is assigned the context by scheduler 364 and then compares the significant bits of the context to the database of known strings that reside in signature memory 366. The signature memory 366 determines whether there is a potential match between the context and one of the known signatures using significant bits, which are those bits that are unique to a particular signature. If there is a potential match, the context and the potentially matched string are sent to leaf string compare 368 which uses leaf string memories 370 to perform a bit to bit comparison of the context and the potentially matched string. Although four string memories 366 and two leaf string memories 370 are shown, any number of string memories 366 and leaf string memories 370 can be used in order to optimize the throughput of content processor 110.
The conclusion of the content scanning are then sent back to the payload scanning interface 344 along with possibly a request for new data to be scanned. The conclusion of the content scanning can be any of a number of possible conclusions. The scanning may not have reached a conclusion yet and may need additional data from a new data packet to continue scanning in which case the state of the traffic flow, which can be referred to as an intermediate state, and any incomplete scans are stored in session memory 354 along with other appropriate information such as sequence numbers, counters, etc. The conclusion reached by signature memory 366 may also be that scanning is complete and there is or isn't a match, in which case the data packet and the conclusion are sent to transmit engine 352 for passing to QoS processor 116 from
State information is stored in session memory 354 and is updated as necessary after data associated with the particular traffic flow is scanned. The state could be an intermediate state, representing that the matching is incomplete and additional data is needed to continue the scanning. Also, the state could be a partial state indicating that one or more events have occurred from a plurality of events required to generate a particular conclusion. The state may be a final state indicating that a final conclusion has been reached for the associated traffic flow and no further scanning is necessary. Or, the state may represent any other condition required or programmed into the content processor 110. The state information for each traffic flow, in whatever form, represents the intelligence of network processing system 40 from
The operation of transmit engine 352, host interface 350, session memory controller 348, which controls the use of session memory 354, and of general-purpose arithmetic logic unit (GP ALU) 346, which is used to increment or decrement counters, move pointers, etc., is controlled by script engine 334. Script engine 334 operates to execute programmable scripts stored in script memory 336 using registers 338 as necessary. Script engine 334 uses control bus 374 to send instruction to any of the elements in context engine 304. Script engine 334 or other engines within content processor 110 have the ability to modify the contents of the data packets scanned. For example, viruses can be detected in emails scanned by content processor 110, in which case the content processor can act to alter the bits of an infected attachment, essentially rendering the email harmless.
The abilities of content processor 110 are unique in a number of respects. Content processor 110 has the ability to scan the contents of any data packet or packets for any information that can be represented as a signature or series of signatures. The signatures can be of any arbitrary length, can begin and end anywhere within the packets and can cross packet boundaries. Further, content processor 110 is able to maintain state awareness throughout all of the individual traffic flows by storing state information for each traffic flow representing any or all signatures matched during the course of that traffic flow. Existing network processors operate by looking for fixed length information at a precise point within each data packet and cannot look across packet boundaries. By only being able to look at fixed length information at precise points in a packet, existing network processors are limited to acting on information contained at an identifiable location within some level of the packet headers and cannot look into the payload of a data packet much less make decisions on state information for the entire traffic flow or even on the contents of the data packet including the payload.
Referring now to
The network processing system of
First, a map of the memory locations inside the network processing engine is produced and stored in memory and counter map 520. Since the network processing system is fully programmable, individual memory locations, counters and registers are assigned functionality by the program. Without a map of the assignments, the data subsequently read from the network processing system would be unintelligible. The memory and counter map produced allows any data produced by the network processing system to be interpreted later.
Additionally, the POL Constructor 516 produces the configuration files for each of the network processing system components. A QoS configuration file 528 is produced that is sent to a QoS compiler 530 and used to produce a QoS configuration image 546. A Header Preprocessor (HPP) program 526 is produced and sent to a HPP compiler 532, which produces an HPP binary file 544. Similarly, a Context Engine script file 524 is produced by POL Constructor 516, which is compiled by context engine script compiler 534 to produce context engine binary file 542. Finally, a signature map file 522 is created that includes the network policy description, and sent to signature algorithm generator 536 which compresses the signature map into an efficient signature memory map 540 in order to more efficiently use the memory in the network processing system. The program also allows for partial updates of the signature memory by using a partial signature memory map 538, which can be used to change only a small part of the signature memory if a full remap of the signature memory is unnecessary.
These four binary files, the QoS configuration file 546, the HPP binary file 544, the context engine binary file 542 and the signature memory map 540 (or partial signature memory map 538, as appropriate) are then combined, along with the processing engine configure source file 552, the policy description source file 550 and the counter and memory map source file 548. The combination is done by the processing engine image builder 554, which produces a policy gateway image load file 556. The policy gateway image load file 556 is the file sent from the separate server to the actual network processing systems to provide the networking processing system with the information and programs necessary to run. The source files are included in the policy gateway image load file 556 to allow the four binary files to be reconstructed and understood from the policy gateway image load file alone, without having to retrace source files in other locations, should anything happen to any part of the network or system.
To understand exactly what is contained in the policy gateway image file 556, the individual components are illustrated as processing engine data 558, control processor data 560, and management processor data 562. Processing engine data 558 contains the left and right signature memory maps for both the left and right processing engines 44 and 46 from
Control processor data 560 contains left and right counter memory maps which are loaded into microprocessor 124 on each of left and right processing engines, respectively. Finally, management processor data 562 contains the left and right configuration source and the left and right policy source, as described above with reference to processing engine configuration source 552 and policy source 550. These files are stored on management module 48 shown in
Referring now to
In addition to pushing image files to the network processing systems, NPS interface program 580 acts to pull statistical and event data out of each network processing system by periodically sending each network processing system requests to upload its statistical and event information. When this information is received by NPS interface program it is sent to statistical database manage 586, which stores it in statistics database 588. Statistics database manager 590 uses information out of memory and counter map 520 to place the information necessary to decipher statistics database 588 into statistics configuration database 592. Statistics database 588 and statistics configuration database 592 can then be used to feed information into billing systems to bill for services, and into network management systems to analyze network operations and efficiency.
While the header preprocessor, the QoS processors, and the flow management processor described with reference to
Although the present invention has been described in detail, those skilled in the art should understand that they can make various changes, substitutions and alterations herein without departing from the spirit and scope of the invention in its broadest form.
Maher, III, Robert Daniel, Rana, Aswinkumar Vishanji, Lie, Milton Andre, Deerman, James Robert, Hervin, Mark Warden, Strother, Jr., Travis Ernest, Carman, John Raymond, Maxwell, Larry Gene
Patent | Priority | Assignee | Title |
10148687, | May 08 2007 | Fortinet, Inc. | Content filtering of remote file-system access protocols |
10491490, | Apr 27 2005 | International Business Machines Corporation | Systems and methods of specifying service level criteria |
11178029, | Apr 27 2005 | International Business Machines Corporation | Systems and methods of specifying service level criteria |
7177924, | Aug 19 2002 | WSOU Investments, LLC | Command line interface processor with dynamic update of attribute dependencies |
7200547, | Jan 30 2002 | ENTROPIC COMMUNICATIONS, INC | Method of processing binary program files |
7415440, | Feb 22 2002 | IRDETO USA, INC | Method and system to provide secure key selection using a secure device in a watercrypting environment |
7451216, | Jun 14 2001 | Invision Networks, Inc.; INVISION NETWORKS, INC | Content intelligent network recognition system and method |
7540028, | Oct 25 2002 | Intel Corporation | Dynamic network security apparatus and methods or network processors |
7570585, | Dec 16 2002 | RPX Corporation | Facilitating DSLAM-hosted traffic management functionality |
7613209, | Mar 30 2004 | Extreme Networks, Inc. | System and method for egress packet marking |
7627899, | Apr 22 2005 | Oracle America, Inc | Method and apparatus for improving user experience for legitimate traffic of a service impacted by denial of service attack |
7672003, | Sep 01 2004 | INTELLECTUAL PROPERTIES I KFT | Network scanner for global document creation, transmission and management |
7675915, | Mar 30 2004 | RPX Corporation | Packet processing system architecture and method |
7822038, | Mar 30 2004 | Extreme Networks, Inc. | Packet processing system architecture and method |
7916656, | Jul 19 2001 | International Business Machines Corporation | Providing a symmetric key for efficient session identification |
8085423, | Sep 01 2004 | INTELLECTUAL PROPERTIES I KFT | Network scanner for global document creation transmission and management |
8161270, | Mar 30 2004 | Extreme Networks, Inc. | Packet data modification processor |
8605732, | Feb 15 2011 | Extreme Networks, Inc. | Method of providing virtual router functionality |
8903949, | Apr 27 2005 | International Business Machines Corporation | Systems and methods of specifying service level criteria |
8924694, | Mar 30 2004 | Extreme Networks, Inc. | Packet data modification processor |
9184901, | Mar 02 2009 | HFI INNOVATION INC | Method and apparatus for communicating carrier configuration in multi-carrier OFDM systems |
9392002, | Jan 31 2002 | PIECE FUTURE PTE LTD | System and method of providing virus protection at a gateway |
9680877, | Dec 16 2008 | AT&T Intellectual Property I, L.P. | Systems and methods for rule-based anomaly detection on IP network flow |
9825988, | May 08 2007 | Fortinet, Inc. | Content filtering of remote file-system access protocols |
9954747, | Apr 27 2005 | International Business Machines Corporation | Systems and methods of specifying service level criteria |
Patent | Priority | Assignee | Title |
5872783, | Jul 24 1996 | Cisco Technology, Inc | Arrangement for rendering forwarding decisions for packets transferred among network switches |
6018526, | Feb 20 1997 | MACRONIX AMERICA, INC | Bridge device with self learning between network media and integrated circuit and method based on the same |
6058429, | Dec 08 1995 | RPX Corporation | Method and apparatus for forwarding traffic between locality attached networks using level 3 addressing information |
6094435, | Jun 30 1997 | Sun Microsystems, Inc | System and method for a quality of service in a multi-layer network element |
6336129, | Dec 05 1997 | Kabushiki Kaisha Toshiba | Packet transfer method and node device using resource reservation or priority transfer control without requiring virtual connection merging |
6477166, | Jun 30 2000 | Ericsson AB | System, method and switch for an MPLS network and an ATM network |
6771645, | May 28 1999 | National Institute of Information and Communications Technology | Packet relaying apparatus |
6771662, | May 30 2000 | Hitachi, Ltd. | Label switching type of packet forwarding apparatus |
6798757, | Jan 11 2001 | Hitachi Communication Technologies, Ltd | Establishing a route with a level of quality of service in a mobile network |
6813243, | Feb 14 2000 | Cisco Technology, Inc. | High-speed hardware implementation of red congestion control algorithm |
Executed on | Assignor | Assignee | Conveyance | Frame | Reel | Doc |
Mar 28 2001 | Netrake Corporation | (assignment on the face of the patent) | / | |||
May 07 2001 | MAHER, ROBERT DANIEL III | Netrake Corporation | ASSIGNMENT OF ASSIGNORS INTEREST SEE DOCUMENT FOR DETAILS | 012604 | /0134 | |
May 07 2001 | MAXWELL, LARRY GENE | Netrake Corporation | ASSIGNMENT OF ASSIGNORS INTEREST SEE DOCUMENT FOR DETAILS | 012604 | /0134 | |
May 07 2001 | DEERMAN, JAMES ROBERT | Netrake Corporation | ASSIGNMENT OF ASSIGNORS INTEREST SEE DOCUMENT FOR DETAILS | 012604 | /0134 | |
May 07 2001 | RANA, ASWINKUMAR VISHANJI | Netrake Corporation | ASSIGNMENT OF ASSIGNORS INTEREST SEE DOCUMENT FOR DETAILS | 012604 | /0134 | |
May 07 2001 | CARMAN, JOHN RAYMOND | Netrake Corporation | ASSIGNMENT OF ASSIGNORS INTEREST SEE DOCUMENT FOR DETAILS | 012604 | /0134 | |
May 07 2001 | HERVIN, MARK WARDEN | Netrake Corporation | ASSIGNMENT OF ASSIGNORS INTEREST SEE DOCUMENT FOR DETAILS | 012604 | /0134 | |
May 08 2001 | STROTHER, TRAVIS ERNEST JR | Netrake Corporation | ASSIGNMENT OF ASSIGNORS INTEREST SEE DOCUMENT FOR DETAILS | 012604 | /0134 | |
May 08 2001 | LIE, MILTON ANDRE | Netrake Corporation | ASSIGNMENT OF ASSIGNORS INTEREST SEE DOCUMENT FOR DETAILS | 012604 | /0134 | |
Dec 24 2004 | Netrake Corporation | Silicon Valley Bank | SECURITY AGREEMENT | 017948 | /0707 | |
Feb 28 2007 | Netrake Corporation | AUDIOCODES TEXAS, INC | CHANGE OF NAME SEE DOCUMENT FOR DETAILS | 019181 | /0768 | |
Apr 05 2007 | Silicon Valley Bank | Netrake Corporation | RELEASE | 019181 | /0502 | |
Dec 12 2007 | AUDIOCODES TEXAS, INC | AUDIOCODES, INC | MERGER SEE DOCUMENT FOR DETAILS | 021876 | /0274 |
Date | Maintenance Fee Events |
Aug 21 2009 | M2551: Payment of Maintenance Fee, 4th Yr, Small Entity. |
Mar 18 2013 | M2552: Payment of Maintenance Fee, 8th Yr, Small Entity. |
Oct 02 2017 | REM: Maintenance Fee Reminder Mailed. |
Mar 19 2018 | EXP: Patent Expired for Failure to Pay Maintenance Fees. |
Date | Maintenance Schedule |
Feb 21 2009 | 4 years fee payment window open |
Aug 21 2009 | 6 months grace period start (w surcharge) |
Feb 21 2010 | patent expiry (for year 4) |
Feb 21 2012 | 2 years to revive unintentionally abandoned end. (for year 4) |
Feb 21 2013 | 8 years fee payment window open |
Aug 21 2013 | 6 months grace period start (w surcharge) |
Feb 21 2014 | patent expiry (for year 8) |
Feb 21 2016 | 2 years to revive unintentionally abandoned end. (for year 8) |
Feb 21 2017 | 12 years fee payment window open |
Aug 21 2017 | 6 months grace period start (w surcharge) |
Feb 21 2018 | patent expiry (for year 12) |
Feb 21 2020 | 2 years to revive unintentionally abandoned end. (for year 12) |